» Articles » PMID: 29157374

Time Series Analysis Based on Two-part Models for Excessive Zero Count Data to Detect Farm-level Outbreaks of Swine Echinococcosis During Meat Inspections

Overview
Journal Prev Vet Med
Date 2017 Nov 22
PMID 29157374
Citations 2
Authors
Affiliations
Soon will be listed here.
Abstract

Echinococcus multilocularis is a parasite that causes highly pathogenic zoonoses and is maintained in foxes and rodents on Hokkaido Island, Japan. Detection of E. multilocularis infections in swine is epidemiologically important. In Hokkaido, administrative information is provided to swine producers based on the results of meat inspections. However, as the current criteria for providing administrative information often results in delays in providing information to producers, novel criteria are needed. Time series models were developed to monitor autocorrelations between data and lags using data collected from 84 producers at the Higashi-Mokoto Meat Inspection Center between April 2003 and November 2015. The two criteria were quantitatively compared using the sign test for the ability to rapidly detect farm-level outbreaks. Overall, the time series models based on an autoexponentially regressed zero-inflated negative binomial distribution with 60th percentile cumulative distribution function of the model detected outbreaks earlier more frequently than the current criteria (90.5%, 276/305, p<0.001). Our results show that a two-part model with autoexponential regression can adequately deal with data involving an excessive number of zeros and that the novel criteria overcome disadvantages of the current criteria to provide an earlier indication of increases in the rate of echinococcosis.

Citing Articles

Evaluating swine disease occurrence on farms using the state-space model based on meat inspection data: a time-series analysis.

Narita T, Kubo M, Nagakura Y, Sekiguchi S Porcine Health Manag. 2024; 10(1):6.

PMID: 38263399 PMC: 11378582. DOI: 10.1186/s40813-024-00355-z.


The impact of echinococcosis interventions on economic outcomes in Qinghai Province of China: Evidence from county-level panel data.

Cai J, Yang K, Chen Q, Zhao Q, Li J, Wang S Front Vet Sci. 2023; 10:1068259.

PMID: 37008365 PMC: 10063884. DOI: 10.3389/fvets.2023.1068259.